Result for 2CF8D47B6DFE7489B72DDCB75B7E934ACC5C632C

Query result

Key Value
FileName./usr/lib64/R/library/rsvd/Meta/data.rds
FileSize103
MD56DAC0A444FD7059F6E7316F50688C90F
SHA-12CF8D47B6DFE7489B72DDCB75B7E934ACC5C632C
SHA-256079B173532B561A7E863E71ADE6DA2115F458267543A80E1EFE287512196D1C8
SSDEEP3:FttVFD6XM/WOjf9hdrts22ixdibhvXPVsglln:XtVF2XjOJhYRiivfVsg/n
TLSHT1FBB0124D937251F0DC07C0305754A25094C00DE7C9DC2A7376280C5AE3C48331DE15FC
hashlookup:parent-total4
hashlookup:trust70

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Parents (Total: 4)

The searched file hash is included in 4 parent files which include package known and seen by metalookup. A sample is included below:

Key Value
MD53C32515200B0060BB0046731FDC784BF
PackageArchx86_64
PackageDescriptionLow-rank matrix decompositions are fundamental tools and widely used for data analysis, dimension reduction, and data compression. Classically, highly accurate deterministic matrix algorithms are used for this task. However, the emergence of large-scale data has severely challenged our computational ability to analyze big data. The concept of randomness has been demonstrated as an effective strategy to quickly produce approximate answers to familiar problems such as the singular value decomposition (SVD). The rsvd package provides several randomized matrix algorithms such as the randomized singular value decomposition (rsvd), randomized principal component analysis (rpca), randomized robust principal component analysis (rrpca), randomized interpolative decomposition (rid), and the randomized CUR decomposition (rcur). In addition several plot functions are provided. The methods are discussed in detail by Erichson et al. (2016) <arXiv:1608.02148>.
PackageNameR-rsvd
PackageReleaselp150.1.4
PackageVersion1.0.2
SHA-1E2B64F2DBDF666C894F1678C402F75C71DC09E9D
SHA-256A05F4267D7DBACC35B2E805CB4D4B9C4EAA752974BB0C017D4BDACD9FF6766AC
Key Value
MD537358972E330270BA98C64072263EC26
PackageArchx86_64
PackageDescriptionLow-rank matrix decompositions are fundamental tools and widely used for data analysis, dimension reduction, and data compression. Classically, highly accurate deterministic matrix algorithms are used for this task. However, the emergence of large-scale data has severely challenged our computational ability to analyze big data. The concept of randomness has been demonstrated as an effective strategy to quickly produce approximate answers to familiar problems such as the singular value decomposition (SVD). The rsvd package provides several randomized matrix algorithms such as the randomized singular value decomposition (rsvd), randomized principal component analysis (rpca), randomized robust principal component analysis (rrpca), randomized interpolative decomposition (rid), and the randomized CUR decomposition (rcur). In addition several plot functions are provided. The methods are discussed in detail by Erichson et al. (2016) <arXiv:1608.02148>.
PackageNameR-rsvd
PackageReleaselp151.1.9
PackageVersion1.0.2
SHA-1E3687E13D4947BA7DB6122D0C3158F4506E3A084
SHA-25654A005564A62AA06B91EF88F4CAFEFD1DD3E28D7B4BC8A4EE6E58B2A679EF807
Key Value
MD5C09137DF59C9E0A01116C48425616E19
PackageArchx86_64
PackageDescriptionLow-rank matrix decompositions are fundamental tools and widely used for data analysis, dimension reduction, and data compression. Classically, highly accurate deterministic matrix algorithms are used for this task. However, the emergence of large-scale data has severely challenged our computational ability to analyze big data. The concept of randomness has been demonstrated as an effective strategy to quickly produce approximate answers to familiar problems such as the singular value decomposition (SVD). The rsvd package provides several randomized matrix algorithms such as the randomized singular value decomposition (rsvd), randomized principal component analysis (rpca), randomized robust principal component analysis (rrpca), randomized interpolative decomposition (rid), and the randomized CUR decomposition (rcur). In addition several plot functions are provided. The methods are discussed in detail by Erichson et al. (2016) <arXiv:1608.02148>.
PackageNameR-rsvd
PackageReleaselp153.1.9
PackageVersion1.0.2
SHA-1C3B20936D9E7954F88AAF70E85D76EF44023DD5B
SHA-256AD05F9A8AAD4FE746B476A6ED017B7D71A60A32D45200B5A6CF74BED49AA35CE
Key Value
MD58664F5137631194C021832E8DB338F5F
PackageArchx86_64
PackageDescriptionLow-rank matrix decompositions are fundamental tools and widely used for data analysis, dimension reduction, and data compression. Classically, highly accurate deterministic matrix algorithms are used for this task. However, the emergence of large-scale data has severely challenged our computational ability to analyze big data. The concept of randomness has been demonstrated as an effective strategy to quickly produce approximate answers to familiar problems such as the singular value decomposition (SVD). The rsvd package provides several randomized matrix algorithms such as the randomized singular value decomposition (rsvd), randomized principal component analysis (rpca), randomized robust principal component analysis (rrpca), randomized interpolative decomposition (rid), and the randomized CUR decomposition (rcur). In addition several plot functions are provided. The methods are discussed in detail by Erichson et al. (2016) <arXiv:1608.02148>.
PackageNameR-rsvd
PackageReleaselp152.1.8
PackageVersion1.0.2
SHA-1028DD563BAFAFF791F91374E86F3FCBE7A442C04
SHA-256A7E6D8C8A704260EB7C167761F6A81971705EAA855544ED3AA06FE7B5D98BF3E